In probably approximately correct (PAC) reinforcement learning (RL), an agent is required to identify an $\epsilon$-optimal policy with probability $1-\delta$. While minimax optimal algorithms exist for this problem, its instance-dependent complexity remains elusive in episodic Markov decision processes (MDPs). In this paper, we propose the first (nearly) matching upper and lower bounds on the sample complexity of PAC RL in deterministic episodic MDPs with finite state and action spaces. In particular, our bounds feature a new notion of sub-optimality gap for state-action pairs that we call the deterministic return gap. While our instance-dependent lower bound is written as a linear program, our algorithms are very simple and do not require...
We study upper and lower bounds on the sample-complexity of learning near-optimal behaviour in finit...
International audienceOptimistic algorithms have been extensively studied for regret minimization in...
International audienceOptimistic algorithms have been extensively studied for regret minimization in...
International audienceIn probably approximately correct (PAC) reinforcement learning (RL), an agent ...
International audienceIn probably approximately correct (PAC) reinforcement learning (RL), an agent ...
International audienceIn probably approximately correct (PAC) reinforcement learning (RL), an agent ...
International audienceIn probably approximately correct (PAC) reinforcement learning (RL), an agent ...
International audienceIn probably approximately correct (PAC) reinforcement learning (RL), an agent ...
International audienceIn probably approximately correct (PAC) reinforcement learning (RL), an agent ...
Several recent works have proposed instance-dependent upper bounds on the number of episodes needed ...
Several recent works have proposed instance-dependent upper bounds on the number of episodes needed ...
We study upper and lower bounds on the sample-complexity of learning near-optimal behaviour in finit...
International audienceIn this paper, we propose new problem-independent lower bounds on the sample c...
We study upper and lower bounds on the sample-complexity of learning near-optimal behaviour in finit...
International audienceIn this paper, we propose new problem-independent lower bounds on the sample c...
We study upper and lower bounds on the sample-complexity of learning near-optimal behaviour in finit...
International audienceOptimistic algorithms have been extensively studied for regret minimization in...
International audienceOptimistic algorithms have been extensively studied for regret minimization in...
International audienceIn probably approximately correct (PAC) reinforcement learning (RL), an agent ...
International audienceIn probably approximately correct (PAC) reinforcement learning (RL), an agent ...
International audienceIn probably approximately correct (PAC) reinforcement learning (RL), an agent ...
International audienceIn probably approximately correct (PAC) reinforcement learning (RL), an agent ...
International audienceIn probably approximately correct (PAC) reinforcement learning (RL), an agent ...
International audienceIn probably approximately correct (PAC) reinforcement learning (RL), an agent ...
Several recent works have proposed instance-dependent upper bounds on the number of episodes needed ...
Several recent works have proposed instance-dependent upper bounds on the number of episodes needed ...
We study upper and lower bounds on the sample-complexity of learning near-optimal behaviour in finit...
International audienceIn this paper, we propose new problem-independent lower bounds on the sample c...
We study upper and lower bounds on the sample-complexity of learning near-optimal behaviour in finit...
International audienceIn this paper, we propose new problem-independent lower bounds on the sample c...
We study upper and lower bounds on the sample-complexity of learning near-optimal behaviour in finit...
International audienceOptimistic algorithms have been extensively studied for regret minimization in...
International audienceOptimistic algorithms have been extensively studied for regret minimization in...